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Neutrino Reconstruction in TRIDENT Based on Graph Neural Network

Author:
Cen Mo, Fuyudi Zhang, Liang Li
Keyword:
High Energy Physics - Experiment, High Energy Physics - Experiment (hep-ex)
journal:
--
date:
2024-01-27 00:00:00
Abstract
TRopIcal DEep-sea Neutrino Telescope (TRIDENT) is a next-generation neutrino telescope to be located in the South China Sea. With a large detector volume and the use of advanced hybrid digital optical modules (hDOMs), TRIDENT aims to discover multiple astrophysical neutrino sources and probe all-flavor neutrino physics. The reconstruction resolution of primary neutrinos is on the critical path to these scientific goals. We have developed a novel reconstruction method based on graph neural network (GNN) for TRIDENT. In this paper, we present the reconstruction performance of the GNN-based approach on both track- and shower-like neutrino events in TRIDENT.
PDF: Neutrino Reconstruction in TRIDENT Based on Graph Neural Network.pdf
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